Assessing the calibration of multivariate probabilistic forecasts
Sam Allen, Johanna Ziegel, David Ginsbourger

TL;DR
This paper explores flexible methods for assessing the calibration of multivariate probabilistic forecasts, emphasizing interpretability and the use of simple pre-rank functions to extract diverse information.
Contribution
It introduces the concept of simple pre-rank functions, enhancing interpretability and flexibility in multivariate forecast calibration assessment.
Findings
Simple pre-rank functions are easy to interpret and implement.
Multiple pre-rank functions provide complementary insights into forecast performance.
E-values can be used to formally test multivariate calibration over time.
Abstract
Rank and PIT histograms are established tools to assess the calibration of probabilistic forecasts. They not only check whether an ensemble forecast is calibrated, but they also reveal what systematic biases (if any) are present in the forecasts. Several extensions of rank histograms have been proposed to evaluate the calibration of probabilistic forecasts for multivariate outcomes. These extensions introduce a so-called pre-rank function that condenses the multivariate forecasts and observations into univariate objects, from which a standard rank histogram can be produced. Existing pre-rank functions typically aim to preserve as much information as possible when condensing the multivariate forecasts and observations into univariate objects. Although this is sensible when conducting statistical tests for multivariate calibration, it can hinder the interpretation of the resulting…
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Taxonomy
TopicsWind and Air Flow Studies · Meteorological Phenomena and Simulations · Atmospheric and Environmental Gas Dynamics
